» Articles » PMID: 38428168

A Predictive Coding Model of the N400

Overview
Journal Cognition
Publisher Elsevier
Specialty Psychology
Date 2024 Mar 1
PMID 38428168
Authors
Affiliations
Soon will be listed here.
Abstract

The N400 event-related component has been widely used to investigate the neural mechanisms underlying real-time language comprehension. However, despite decades of research, there is still no unifying theory that can explain both its temporal dynamics and functional properties. In this work, we show that predictive coding - a biologically plausible algorithm for approximating Bayesian inference - offers a promising framework for characterizing the N400. Using an implemented predictive coding computational model, we demonstrate how the N400 can be formalized as the lexico-semantic prediction error produced as the brain infers meaning from the linguistic form of incoming words. We show that the magnitude of lexico-semantic prediction error mirrors the functional sensitivity of the N400 to various lexical variables, priming, contextual effects, as well as their higher-order interactions. We further show that the dynamics of the predictive coding algorithm provides a natural explanation for the temporal dynamics of the N400, and a biologically plausible link to neural activity. Together, these findings directly situate the N400 within the broader context of predictive coding research. More generally, they raise the possibility that the brain may use the same computational mechanism for inference across linguistic and non-linguistic domains.

Citing Articles

Perception of short, but not long, time intervals is modality specific: EEG evidence using vibrotactile stimuli.

Thibault N, Sharp A, Albouy P, Grondin S Cereb Cortex. 2025; 35(3).

PMID: 40056421 PMC: 11890066. DOI: 10.1093/cercor/bhaf051.


Neural Dynamics of the Processing of Speech Features: Evidence for a Progression of Features from Acoustic to Sentential Processing.

Karunathilake I, Brodbeck C, Bhattasali S, Resnik P, Simon J J Neurosci. 2025; 45(11).

PMID: 39809543 PMC: 11905352. DOI: 10.1523/JNEUROSCI.1143-24.2025.


Brain-model neural similarity reveals abstractive summarization performance.

Zhang Z, Guo S, Zhou W, Luo Y, Zhu Y, Zhang L Sci Rep. 2025; 15(1):370.

PMID: 39747634 PMC: 11696092. DOI: 10.1038/s41598-024-84530-w.


An implemented predictive coding model of lexico-semantic processing explains the dynamics of univariate and multivariate activity within the left ventromedial temporal lobe during reading comprehension.

Wang L, Nour Eddine S, Brothers T, Jensen O, Kuperberg G Neuroimage. 2024; 308:120977.

PMID: 39694345 PMC: 11894502. DOI: 10.1016/j.neuroimage.2024.120977.


Convergent neural signatures of speech prediction error are a biological marker for spoken word recognition.

Sohoglu E, Beckers L, Davis M Nat Commun. 2024; 15(1):9984.

PMID: 39557848 PMC: 11574182. DOI: 10.1038/s41467-024-53782-5.


References
1.
Braun M, Jacobs A, Hahne A, Ricker B, Hofmann M, Hutzler F . Model-generated lexical activity predicts graded ERP amplitudes in lexical decision. Brain Res. 2006; 1073-1074:431-9. DOI: 10.1016/j.brainres.2005.12.078. View

2.
Fitz H, Chang F . Language ERPs reflect learning through prediction error propagation. Cogn Psychol. 2019; 111:15-52. DOI: 10.1016/j.cogpsych.2019.03.002. View

3.
Meade G, Mahnich C, Holcomb P, Grainger J . Orthographic neighborhood density modulates the size of transposed-letter priming effects. Cogn Affect Behav Neurosci. 2021; 21(5):948-959. DOI: 10.3758/s13415-021-00905-w. View

4.
Federmeier K . Thinking ahead: the role and roots of prediction in language comprehension. Psychophysiology. 2007; 44(4):491-505. PMC: 2712632. DOI: 10.1111/j.1469-8986.2007.00531.x. View

5.
Nobre A, McCarthy G . Language-related field potentials in the anterior-medial temporal lobe: II. Effects of word type and semantic priming. J Neurosci. 1995; 15(2):1090-8. PMC: 6577813. View